Multi-Agent Deep Reinforcement Learning for Uplink Power Control in Multi-Cell Systems

Ruibao Jia, L. Liu, Xufei Zheng, Yuhan Yang, Shaoyang Wang, Pingmu Huang, Tiejun Lv
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引用次数: 1

Abstract

The power control is a significant technique for suppressing co-channel interference that severely limits the capacity and connectivity of multi-cell communication systems. In this paper, we propose a novel and efficient multi-agent deep reinforcement learning (MADRL)-based uplink power control method for multi-cell multi-user communication systems. We first formulate the multi-user uplink transmission power optimization problem to maximize the sum throughput of multiple cells. Then, the optimization problem is transformed into a Markov decision process. Since the multi-user power control needs to consider the cooperation of strategies between users, the MADRL technique can be adopted. In our MADRL model, each agent outputs the uplink transmission power of the corresponding user by leveraging the value decomposition network. We also design a pruning algorithm to accelerate the training process of the MADRL model. The experimental results indicate that the proposed MADRL-based uplink power control method is superior to the baseline methods in terms of system throughput and quality of service. The designed pruning algorithm can effectively accelerate model training and also further improve the throughput performance of the proposed method.
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基于多智能体深度强化学习的多单元系统上行功率控制
功率控制是抑制同信道干扰的一项重要技术,同信道干扰严重限制了多小区通信系统的容量和连通性。本文提出了一种基于多智能体深度强化学习(MADRL)的多单元多用户通信系统上行功率控制方法。我们首先提出了多用户上行传输功率优化问题,以最大化多个小区的总吞吐量。然后,将优化问题转化为马尔可夫决策过程。由于多用户功率控制需要考虑用户间策略的协同,可以采用MADRL技术。在我们的MADRL模型中,每个agent利用值分解网络输出对应用户的上行传输功率。我们还设计了一种剪枝算法来加速MADRL模型的训练过程。实验结果表明,基于madrl的上行功率控制方法在系统吞吐量和服务质量方面优于基线方法。所设计的剪枝算法可以有效地加速模型训练,并进一步提高所提出方法的吞吐量性能。
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